Takato Yamazaki


2023

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A Follow-up Study on Evaluation Metrics Using Follow-up Utterances
Toshiki Kawamoto | Yuki Okano | Takato Yamazaki | Toshinori Sato | Kotaro Funakoshi | Manabu Okumura
Proceedings of the 37th Pacific Asia Conference on Language, Information and Computation

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An Open-Domain Avatar Chatbot by Exploiting a Large Language Model
Takato Yamazaki | Tomoya Mizumoto | Katsumasa Yoshikawa | Masaya Ohagi | Toshiki Kawamoto | Toshinori Sato
Proceedings of the 24th Annual Meeting of the Special Interest Group on Discourse and Dialogue

With the ambition to create avatars capable of human-level casual conversation, we developed an open-domain avatar chatbot, situated in a virtual reality environment, that employs a large language model (LLM). Introducing the LLM posed several challenges for multimodal integration, such as developing techniques to align diverse outputs and avatar control, as well as addressing the issue of slow generation speed. To address these challenges, we integrated various external modules into our system. Our system is based on the award-winning model from the Dialogue System Live Competition 5. Through this work, we hope to stimulate discussions within the research community about the potential and challenges of multimodal dialogue systems enhanced with LLMs.

2021

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Phrase-Level Action Reinforcement Learning for Neural Dialog Response Generation
Takato Yamazaki | Akiko Aizawa
Findings of the Association for Computational Linguistics: ACL-IJCNLP 2021

2020

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A Linguistic Analysis of Visually Grounded Dialogues Based on Spatial Expressions
Takuma Udagawa | Takato Yamazaki | Akiko Aizawa
Findings of the Association for Computational Linguistics: EMNLP 2020

Recent models achieve promising results in visually grounded dialogues. However, existing datasets often contain undesirable biases and lack sophisticated linguistic analyses, which make it difficult to understand how well current models recognize their precise linguistic structures. To address this problem, we make two design choices: first, we focus on OneCommon Corpus (CITATION), a simple yet challenging common grounding dataset which contains minimal bias by design. Second, we analyze their linguistic structures based on spatial expressions and provide comprehensive and reliable annotation for 600 dialogues. We show that our annotation captures important linguistic structures including predicate-argument structure, modification and ellipsis. In our experiments, we assess the model’s understanding of these structures through reference resolution. We demonstrate that our annotation can reveal both the strengths and weaknesses of baseline models in essential levels of detail. Overall, we propose a novel framework and resource for investigating fine-grained language understanding in visually grounded dialogues.